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Computer-Aided Histopathological Characterisation of Endometriosis Lesions

Endometriosis is a common gynaecological condition characterised by the growth of endometrial tissue outside the uterus and is associated with pain and infertility. Currently, the gold standard for endometriosis diagnosis is laparoscopic excision and histological identification of endometrial epithe...

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Autores principales: McKInnon, Brett D., Nirgianakis, Konstantinos, Ma, Lijuan, Wotzkow, Carlos Alvarez, Steiner, Selina, Blank, Fabian, Mueller, Michael D.
Formato: Online Artículo Texto
Lenguaje:English
Publicado: MDPI 2022
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9504345/
https://www.ncbi.nlm.nih.gov/pubmed/36143304
http://dx.doi.org/10.3390/jpm12091519
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author McKInnon, Brett D.
Nirgianakis, Konstantinos
Ma, Lijuan
Wotzkow, Carlos Alvarez
Steiner, Selina
Blank, Fabian
Mueller, Michael D.
author_facet McKInnon, Brett D.
Nirgianakis, Konstantinos
Ma, Lijuan
Wotzkow, Carlos Alvarez
Steiner, Selina
Blank, Fabian
Mueller, Michael D.
author_sort McKInnon, Brett D.
collection PubMed
description Endometriosis is a common gynaecological condition characterised by the growth of endometrial tissue outside the uterus and is associated with pain and infertility. Currently, the gold standard for endometriosis diagnosis is laparoscopic excision and histological identification of endometrial epithelial and stromal cells. There is, however, currently no known association between the histological appearance, size, morphology, or subtype of endometriosis and disease prognosis. In this study, we used histopathological software to identify and quantify the number of endometrial epithelial and stromal cells within excised endometriotic lesions and assess the relationship between the cell contents and lesion subtypes. Prior to surgery for suspected endometriosis, patients provided menstrual and abdominal pain and dyspareunia scores. Endometriotic lesions removed during laparoscopic surgery were collected and prepared for immunohistochemistry from 26 patients. Endometrial epithelial and stromal cells were identified with Cytokeratin and CD10 antibodies, respectively. Whole slide sections were digitised and the QuPath software was trained to automatically detect and count epithelial and stromal cells across the whole section. Using this classifier, we identified a significantly larger number of strongly labelled CD10 stromal cells (p = 0.0477) in deeply infiltrating lesions (99,970 ± 2962) compared to superficial lesions (2456 ± 859). We found the ratio of epithelial to stromal cells was inverted in deeply infiltrating endometriosis lesions compared to superficial peritoneal and endometrioma lesions and we subsequently identified a correlation between total endometrial cells and abdominal pain (p = 0.0005) when counted via the automated software. Incorporating histological software into current standard diagnostic pipelines may improve endometriosis diagnosis and provide prognostic information in regards to severity and symptoms and eventually provide the potential to personalise adjuvant treatment decisions.
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spelling pubmed-95043452022-09-24 Computer-Aided Histopathological Characterisation of Endometriosis Lesions McKInnon, Brett D. Nirgianakis, Konstantinos Ma, Lijuan Wotzkow, Carlos Alvarez Steiner, Selina Blank, Fabian Mueller, Michael D. J Pers Med Article Endometriosis is a common gynaecological condition characterised by the growth of endometrial tissue outside the uterus and is associated with pain and infertility. Currently, the gold standard for endometriosis diagnosis is laparoscopic excision and histological identification of endometrial epithelial and stromal cells. There is, however, currently no known association between the histological appearance, size, morphology, or subtype of endometriosis and disease prognosis. In this study, we used histopathological software to identify and quantify the number of endometrial epithelial and stromal cells within excised endometriotic lesions and assess the relationship between the cell contents and lesion subtypes. Prior to surgery for suspected endometriosis, patients provided menstrual and abdominal pain and dyspareunia scores. Endometriotic lesions removed during laparoscopic surgery were collected and prepared for immunohistochemistry from 26 patients. Endometrial epithelial and stromal cells were identified with Cytokeratin and CD10 antibodies, respectively. Whole slide sections were digitised and the QuPath software was trained to automatically detect and count epithelial and stromal cells across the whole section. Using this classifier, we identified a significantly larger number of strongly labelled CD10 stromal cells (p = 0.0477) in deeply infiltrating lesions (99,970 ± 2962) compared to superficial lesions (2456 ± 859). We found the ratio of epithelial to stromal cells was inverted in deeply infiltrating endometriosis lesions compared to superficial peritoneal and endometrioma lesions and we subsequently identified a correlation between total endometrial cells and abdominal pain (p = 0.0005) when counted via the automated software. Incorporating histological software into current standard diagnostic pipelines may improve endometriosis diagnosis and provide prognostic information in regards to severity and symptoms and eventually provide the potential to personalise adjuvant treatment decisions. MDPI 2022-09-16 /pmc/articles/PMC9504345/ /pubmed/36143304 http://dx.doi.org/10.3390/jpm12091519 Text en © 2022 by the authors. https://creativecommons.org/licenses/by/4.0/Licensee MDPI, Basel, Switzerland. This article is an open access article distributed under the terms and conditions of the Creative Commons Attribution (CC BY) license (https://creativecommons.org/licenses/by/4.0/).
spellingShingle Article
McKInnon, Brett D.
Nirgianakis, Konstantinos
Ma, Lijuan
Wotzkow, Carlos Alvarez
Steiner, Selina
Blank, Fabian
Mueller, Michael D.
Computer-Aided Histopathological Characterisation of Endometriosis Lesions
title Computer-Aided Histopathological Characterisation of Endometriosis Lesions
title_full Computer-Aided Histopathological Characterisation of Endometriosis Lesions
title_fullStr Computer-Aided Histopathological Characterisation of Endometriosis Lesions
title_full_unstemmed Computer-Aided Histopathological Characterisation of Endometriosis Lesions
title_short Computer-Aided Histopathological Characterisation of Endometriosis Lesions
title_sort computer-aided histopathological characterisation of endometriosis lesions
topic Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9504345/
https://www.ncbi.nlm.nih.gov/pubmed/36143304
http://dx.doi.org/10.3390/jpm12091519
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